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NON-PARAMETRIC SEGMENTATION OF REGIME-SWITCHING TIME SERIES WITH OBLIQUE SWITCHING TREES

机译:具有斜切换树的政权切换时间序列的非参数分割

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We introduce a non-parametric approach for the segmentation in regime-switching time-series models. The approach is based on spectral clustering of target-regressor tuples and derives a switching regression tree, where regime switches are modeled by oblique splits. Our segmentation method is very parsimonious in the number of splits evaluated during the construction process of the tree-for a candidate node, the method only proposes one oblique split on regressors and a few targeted splits on time. The regime-switching model can therefore be learned efficiently from data. We use the class of ART time series models to serve as illustration, but because of the non-parametric nature of our segmentation approach, it readily generalizes to a wide range of time-series models that go beyond the Gaussian error assumption in ART models. Experimental results on S&P 1500 financial trading data demonstrates dramatically improved predictive accuracy for the exemplifying ART models.
机译:我们介绍了一种非参数方法,用于切换时间序列模型中的分段。该方法基于目标回归元组的频谱聚类,并导出切换回归树,其中由倾斜分配建模的结果开关。我们的分割方法在树木的施工过程中评估的分割数量非常有解释 - 对于候选节点,该方法仅提出了一个倾斜分流在回归器上的倾斜分开,并且少数有针对性的分裂。因此,可以从数据中学习政权切换模型。我们使用艺术时间序列模型作为图示,而是由于我们的分割方法的非参数性质,它易于推广到广泛的艺术模型中高斯错误假设的各种时间序列模型。 S&P 1500金融交易数据的实验结果表明,用于举例说明的艺术模型的预测准确性大大提高。

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